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J Trauma Acute Care Surg · Apr 2014
Multicenter StudyDeveloping best practices to study trauma outcomes in large databases: an evidence-based approach to determine the best mortality risk adjustment model.
- Adil H Haider, Zain G Hashmi, Syed Nabeel Zafar, Renan Castillo, Elliott R Haut, Eric B Schneider, Edward E Cornwell, Ellen J Mackenzie, and David T Efron.
- From the Center for Surgical Trials and Outcomes Research (A.H.H., Z.G.H., E.R.H., E.B.S., D.T.E.), Department of Surgery, The Johns Hopkins School of Medicine; and Department of Health Policy and Management (A.H.H., E.J.M.), Johns Hopkins Bloomberg School of Public Health, Baltimore, Maryland; and Department of Surgery (S.N.Z., E.E.C.), Howard University College of Medicine, Washington, District of Columbia.
- J Trauma Acute Care Surg. 2014 Apr 1;76(4):1061-9.
BackgroundThe National Trauma Data Bank (NTDB) is an invaluable resource to study trauma outcomes. Recent evidence suggests the existence of great variability in covariate handling and inclusion in multivariable analyses using NTDB, leading to differences in the quality of published studies and potentially in benchmarking trauma centers. Our objectives were to identify the best possible mortality risk adjustment model (RAM) and to define the minimum number of covariates required to adequately predict trauma mortality in the NTDB.MethodsAnalysis of NTDB 2009 was performed to identify the best RAM for trauma mortality. For each plausible NTDB covariate, univariate logistic regression was performed, and the area under the receiver operating characteristics curve (AUROC, with 95% confidence interval [CI]) was calculated. Covariates with p < 0.01 and an AUROC of 0.6 of greater or with strong previous evidence were included in the subsequent multivariate logistic regression analyses. Manual backward selection was then used to identify the most parsimonious RAM with a similar AUROC (overlapping 95% CI). Similar analyses were performed for penetrating and severely injured patient subsets. All models were validated using NTDB 2010.ResultsA total of 630,307 patients from NTDB 2009 were analyzed. A total of 16 of 106 NTDB covariates tested on univariate analyses were selected for inclusion in the initial multivariate model. The best RAM included only six covariates (age, hypotension, pulse, total Glasgow Coma Scale [GCS] score, Injury Severity Score [ISS], and a need for ventilator use) yet still demonstrated excellent discrimination between survivors and nonsurvivors (AUROC, 0.9578; 95% CI, 0.9565-0.9590). In addition, this model was validated on 665,138 patients included in NTDB 2010 (AUROC, 0.9577; 95% CI, 0.9564-0.9589). Similar results were obtained for the subset analyses.ConclusionThis quantitative synthesis proposes a framework and a set of covariates for studying trauma mortality outcomes. Such analytic standardization may prove critical in implementing best practices aimed at improving the quality and consistency of NTDB-based research.Level Of EvidencePrognostic study, level III.
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